scispace - formally typeset
Open AccessJournal ArticleDOI

Learning in the presence of concept drift and hidden contexts

TLDR
A family of learning algorithms that flexibly react to concept drift and can take advantage of situations where contexts reappear are described, including a heuristic that constantly monitors the system's behavior.
Abstract
On-line learning in domains where the target concept depends on some hidden context poses serious problems. A changing context can induce changes in the target concepts, producing what is known as concept drift. We describe a family of learning algorithms that flexibly react to concept drift and can take advantage of situations where contexts reappear. The general approach underlying all these algorithms consists of (1) keeping only a window of currently trusted examples and hypotheses; (2) storing concept descriptions and reusing them when a previous context re-appears; and (3) controlling both of these functions by a heuristic that constantly monitors the system's behavior. The paper reports on experiments that test the systems' perfomance under various conditions such as different levels of noise and different extent and rate of concept drift.

read more

Content maybe subject to copyright    Report

Citations
More filters
Journal ArticleDOI

Fuzzy knowledge representation study for incremental learning in data streams and classification problems

TL;DR: The overall results show that Fuzzy-UCS can effectively deal with problems with concept changes and lead to different interesting conclusions on the particular behavior of each representation.
Proceedings ArticleDOI

How to Cope with Change? Preserving Validity of Predictive Services over Time

TL;DR: This work develops a framework which allows to characterize and differentiate predictive services with regard to their ongoing validity, and proposes a research agenda of worthwhile research topics to improve the long-term validity of predictive services.
Journal ArticleDOI

Comprehensive analysis for class imbalance data with concept drift using ensemble based classification

TL;DR: The ensemble classifiers provide better accuracy when compared to the single classifier and ensemble based methods has shown good performance compared to strong single learners when dealing with concept drift and class imbalance data.
Posted Content

A review of single-source unsupervised domain adaptation.

Wouter M. Kouw, +1 more
TL;DR: This review asks the questions: when and how a classifier can learn from a source domain and generalize to a target domain and presents a categorization of approaches, divided into sample-based, feature-based and inference-based methods.
Book ChapterDOI

An Aggregate Ensemble for Mining Concept Drifting Data Streams with Noise

TL;DR: A Realistic Assumption is proposed which asserts that the difficulties of mining data streams are mainly caused by both concept drifting and noisy data chunks, and a new Aggregate Ensemble (AE) framework is presented, which trains base classifiers using different learning algorithms on different data chunks.
References
More filters
Proceedings ArticleDOI

A theory of the learnable

TL;DR: This paper regards learning as the phenomenon of knowledge acquisition in the absence of explicit programming, and gives a precise methodology for studying this phenomenon from a computational viewpoint.
Journal ArticleDOI

Instance-Based Learning Algorithms

TL;DR: This paper describes how storage requirements can be significantly reduced with, at most, minor sacrifices in learning rate and classification accuracy and extends the nearest neighbor algorithm, which has large storage requirements.
Book

Machine Learning: An Artificial Intelligence Approach

TL;DR: This book contains tutorial overviews and research papers on contemporary trends in the area of machine learning viewed from an AI perspective, including learning from examples, modeling human learning strategies, knowledge acquisition for expert systems, learning heuristics, discovery systems, and conceptual data analysis.
Journal ArticleDOI

Learnability and the Vapnik-Chervonenkis dimension

TL;DR: This paper shows that the essential condition for distribution-free learnability is finiteness of the Vapnik-Chervonenkis dimension, a simple combinatorial parameter of the class of concepts to be learned.
Journal ArticleDOI

Queries and Concept Learning

TL;DR: This work considers the problem of using queries to learn an unknown concept, and several types of queries are described and studied: membership, equivalence, subset, superset, disjointness, and exhaustiveness queries.